Prediction of local fixed charge density loss in cartilage following ACL injury and reconstruction: a computational proof-of-concept study with MRI follow-up.

2020 
The purpose of this proof-of-concept study was to develop 3D patient-specific mechanobiological knee joint models to simulate alterations in the fixed charged density (FCD) around cartilage lesions during the stance phase of the walking gait. Two patients with ACL reconstructed knees were imaged at 1- and 3-years after surgery. The MRI data was used for segmenting the knee geometries, including the cartilage lesions. Based on these geometries, finite element (FE) models were developed. The gait of the patients was obtained using a motion capture system. Musculoskeletal modeling was utilized to calculate knee joint contact and lower extremity muscle forces for the FE models. Finally, a cartilage adaptation algorithm was implemented in both FE models. In the algorithm, it was assumed that excessive maximum shear and deviatoric strains (calculated as the combination of principal strains), and fluid velocity, are responsible for the FCD loss. Changes in the longitudinal T1ρ and T2 relaxation times were postulated to be related to changes in the cartilage composition and were compared with the numerical predictions. In Patient 1 model, both the excessive fluid velocity and strain caused the FCD loss primarily near the cartilage lesion. T1ρ and T2 relaxation times increased during the follow-up in the same location. In contrast, in Patient 2 model, only the excessive fluid velocity led to a slight FCD loss near the lesion, where MRI parameters did not show evidence of alterations. Significance: This novel proof-of-concept study suggests mechanisms through which a local FCD loss might occur near cartilage lesions. In order to obtain statistical evidence for these findings, the method should be investigated with a larger cohort of subjects. This article is protected by copyright. All rights reserved.
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